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Climate policy support as a tool to control others’ (but not own) environmental behavior?

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  • Charlotte A Kukowski
  • Katharina Bernecker
  • Leoni von der Heyde
  • Margarete Boos
  • Veronika Brandstätter

Abstract

Drastic reductions in greenhouse gas emissions are necessary to successfully mitigate climate change. Individual environmental behavior is central to this change. Given that environmental behavior necessitates 1) effortful individual self-control and 2) cooperation by others, public policy may constitute an attractive instrument for regulating one’s own as well as others’ environmental behavior. Framing climate change mitigation as a cooperative self-control problem, we explore the incremental predictive power of self-control and beliefs surrounding others’ cooperation beyond established predictors of policy support in study 1 using machine-learning (N = 610). In study 2, we systematically test and confirm the effects of self-control and beliefs surrounding others’ cooperation (N = 270). Both studies showed that personal importance of climate change mitigation and perceived insufficiency of others’ environmental behavior predict policy support, while there was no strong evidence for a negative association between own-self control success and policy support. These results emerge beyond the effects of established predictors, such as environmental attitudes and beliefs, risk perception (study 1), and social norms (study 2). Results are discussed in terms of leveraging policy as a behavioral enactment constraint to control others’ but not own environmental behavior.

Suggested Citation

  • Charlotte A Kukowski & Katharina Bernecker & Leoni von der Heyde & Margarete Boos & Veronika Brandstätter, 2022. "Climate policy support as a tool to control others’ (but not own) environmental behavior?," PLOS ONE, Public Library of Science, vol. 17(6), pages 1-22, June.
  • Handle: RePEc:plo:pone00:0269030
    DOI: 10.1371/journal.pone.0269030
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    References listed on IDEAS

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